* Update Modal App: Updated Modal App to include: 1. Latest Modal API usage 2. Ability to launch different Pipecat pipelines, much like the simple chatbot example 3. Ability to choose which pipeline is launched via the /connect endpoint 4. Added a pipeline option for connecting to a self-hosted LLM on Modal 5. Improved READMEs 6. Added a web client for interacting with the Modal deployment tmp * Update README
84 lines
5.1 KiB
Markdown
84 lines
5.1 KiB
Markdown
# Deploying Pipecat to Modal.com
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Deployment example for [modal.com](https://www.modal.com). This example demonstrates how to deploy a FastAPI webapp to Modal with an RTVI compatible `/connect` endpoint that launches a Pipecat pipeline in a separate Modal container and returns a room/token for the client to join. This example also supports providing a parameter to the `/connect` endpoint for specifying which Pipecat pipeline to launch; openai, gemini, or vllm. The vllm pipeline points to a self-hosted OpenAI compatible LLM, using a llama model (neuralmagic/Meta-Llama-3.1-8B-Instruct-quantized.w4a16), deployed to Modal.
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# Running this Example
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## Prerequisites
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Setup a Modal account and install it on your machine if you have not already, following their easy 3-steps in their [Getting Started Guide](https://modal.com/docs/guide#getting-started)
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## Deploy a self-serve LLM
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1. Follow the Modal Guide and example for [Deploying an OpenAI-compatible LLM service with vLLM](https://modal.com/docs/examples/vllm_inference).
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The TLDR, though, is to simply do the following from within this directory:
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```bash
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git clone https://github.com/modal-labs/modal-examples
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cd modal-examples
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modal deploy 06_gpu_and_ml/llm-serving/vllm_inference.py
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```
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2. Jot down the endpoint from the previous step to use in the bot_vllm file mentioned below. It will look something like: `https://<Modal workspace>--example-vllm-openai-compatible-serve.modal.run`
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**Note:** This Modal example is their [initial getting started example](https://modal.com/docs/examples/vllm_inference) with a Llama-3.1 model. By default, it will tear down the container after 15 minutes of inactivity and can take 5-10 minutes to re-start, during which time it is unusable. So for the purposes of just getting started and this example, we recommend visiting the `/docs` endpoint (`https://<Modal workspace>--example-vllm-openai-compatible-serve.modal.run/docs`) for your deployed llm in a browser to trigger the cold start. Then wait for the page to load, indicating its ready before trying to connect your client.
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## Deploy FastAPI App and Pipecat pipeline to Modal
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1. Setup environment variables
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```bash
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cd server
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cp env.example .env
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# Modify .env to provide your service API Keys
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```
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Alternatively, you can configure your Modal app to use [secrets](https://modal.com/docs/guide/secrets)
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1. Update the `modal_url` in `server/src/bot_vllm.py` to point to the url produced from the self-serve llm deploy, mentioned above.
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2. From within the `server` directory, test the app locally:
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```bash
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modal serve app.py
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```
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4. Deploy to production
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```bash
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modal deploy app.py
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```
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5. Jot down the endpoint from the previous step to use in the client's app.js file mentioned its README. It will look something like: `https://<Modal workspace>--pipecat-modal-fastapi-app.modal.run`
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## Launch and Talk to your Bots running on Modal
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## Option 1: Direct Link
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Simply click on the url displayed after running the server or deploy step to launch an agent and be redirected to a Daily room to talk with the launched bot. This will use the OpenAI pipeline.
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## Option 2: Connect via an RTVI Client
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Follow the instructions provided in the [client folder's README](client/javascript/README.md) for building and running a custom client that connects to your Modal endpoint. The provided client provides a dropdown for choosing which bot pipeline to run.
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# Navigating your llm, server, and Pipecat logs
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In your [Modal dashboard](https://modal.com/apps), you should have two Apps listed under Live Apps:
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1. `example-vllm-openai-compatible`: This App contains the containers and logs used to run your self-hosted LLM. There will be just one App Function listed: `serve`. Click on this function to view logs for your LLM.
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2. `pipecat-modal`: This App contains the containers and logs used to run your `connect` endpoints and Pipecat pipelines. It will list two App Functions:
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1. `fastapi_app`: This function is running the endpoints that your client will interact with and initiate starting a new pipeline (`/`, `/connect`, `/status`). Click on this function to see logs for each endpoint hit.
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2. `bot_runner`: This function handles launching and running a bot pipeline. Click on this function to get a list of all pipeline runs and access each run's logs.
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## Diagram of Deployment
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# Modal + Pipecat Tips
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- In most other Pipecat examples, we use Popen to launch the pipeline process from the /connect endpoint. In this example, we instead use a Modal function with its own Modal image defined. This change ensures that each run of the Pipeline happens in a isolated, customizable container.
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- For the FastAPI and most common Pipecat Pipeline containers, a default debian_slim CPU-only should be all that's required to run. GPU containers are needed for self-hosted services.
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- To minimize cold starts of the pipeline and reduce latency for users, set `min_containers=1` on the Modal Function that launches the pipeline to ensure at least one warm instance of your function is always available.
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- For next steps on running a self-hosted llm and reducing latency, check out all of [Modal's LLM examples](https://modal.com/docs/examples/vllm_inference).
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